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arxiv 2409.16693 v1 pith:OSWNAG7B submitted 2024-09-25 cs.AI

CaBRNet, an open-source library for developing and evaluating Case-Based Reasoning Models

classification cs.AI
keywords cabrnetcase-basedmodelsopen-sourcereasoningaiser-teamalternativeattempt
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In the field of explainable AI, a vibrant effort is dedicated to the design of self-explainable models, as a more principled alternative to post-hoc methods that attempt to explain the decisions after a model opaquely makes them. However, this productive line of research suffers from common downsides: lack of reproducibility, unfeasible comparison, diverging standards. In this paper, we propose CaBRNet, an open-source, modular, backward-compatible framework for Case-Based Reasoning Networks: https://github.com/aiser-team/cabrnet.

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